When
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Where
Amilcar Velez from Cornell University will present "On the Asymptotic Properties of Debiased Machine Learning Estimators".
Abstract: This paper studies debiased machine learning (DML) under a novel asymptotic framework. DML is a two-step estimation method for econometric models in which the parameter of interest depends on unknown nuisance functions. It uses K-fold cross-fitting to accommodate flexible machine-learning estimators. Practitioners implementing DML confront multiple decisions: whether to use DML1 or DML2 (two variants of DML estimators), and how to choose K. Existing fixed-K asymptotic theory establishes that DML1 and DML2 are asymptotically equivalent, offering no formal guidance on which variant to use or how to select K. Under a framework in which K can grow with the sample size n, we demonstrate that DML2 offers theoretical advantages over DML1 in terms of bias, mean-squared error (MSE), and inference. When first-step estimators admit a linear stochastic expansion, we further show that for scalar DML2 the choice K=n is asymptotically optimal in terms of second-order asymptotic bias and MSE.